An Image Dataset and an Effective Detection Algorithm for Human Body Acupoints

计算机科学 人工智能 图像(数学) 模式识别(心理学) 算法 计算机视觉
作者
Yugui Zhang,Anyi Feng,Liping Zhang,Bin Li,Lu Zhang,Fengcai Cao,Weijun Li,Linpeng Wang,Xu Liu,Mingliang Zhou
出处
期刊:International Journal of Pattern Recognition and Artificial Intelligence [World Scientific]
卷期号:38 (13)
标识
DOI:10.1142/s021800142457012x
摘要

With the development of artificial intelligence, computer vision technology has been widely used in the fields of security monitoring, automatic driving and wisdom city. However, there has not been a research on the detection of the meridians in human bodies by using the computer vision technology. In order to promote the use of the computer vision technology in human meridian detection, this paper first releases a dataset based on human meridians, which makes up for the gap in the field of human meridian detection using image processing technology. Moreover, the human meridian detection dataset is manually annotated and proofread by experienced Traditional Chinese Medicine (TCM) practitioners according to the position and direction of the human meridians, so that the annotated human meridians are as accurate as possible. The released human meridian dataset label’s 12 meridians, including spleen meridian, pericardium meridian, stomach meridian, lung meridian, heart meridian, kidney meridian, gallbladder meridian, liver meridian, triple energizer meridian, bladder meridian, large intestine meridian and small intestine meridian. A total of 296 acupoints were labeled. At last, this paper proposes a method for data augmentation, especially for datasets with a small amount of data, wherein the data amount can be augmented by enhancing the underlying edge visual features of the data. Experimental results show that human meridians can be detected by using image processing technology, and the proposed method for data augmentation can effectively improve the detection accuracy of human meridians. The dataset can be downloaded from https://www.zksylf.com/col.jsp?id=127 .
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